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120+ Creative Insurance Project Topics For Students In 2023

Insurance Project Topics

Insurance plays a pivotal role in safeguarding individuals and businesses from unforeseen risks, offering a protective financial cushion in times of need. However, in academia, students often delve into the intricacies of insurance through dedicated projects. These insurance projects serve as essential tools for grasping the nuances of risk management, finance, and more.

But what exactly is an insurance project? It’s a comprehensive exploration of various facets of insurance, shedding light on principles, practices, and real-world applications. The importance of such projects for students cannot be overstated, as they provide a practical understanding of a vital industry.

In this blog, we’ll delve into the world of insurance projects, discussing their types, 120+ creative insurance project topics for students in 2023, essential components of a quality project, and the challenges and opportunities that await. Stay tuned with us to explore the dynamic realm of “insurance project topics.

What Is An Insurance Project?

Table of Contents

An insurance project is like a special school assignment where you learn about how insurance works. It’s a bit like when you study history or science, but here, you’re studying how insurance helps people and businesses. You look at things like how insurance companies calculate prices, why people need insurance, and how they pay when something goes wrong.

In an insurance project, you might also investigate different types of insurance, like car insurance or health insurance. It’s a bit like exploring different flavors of ice cream – each type of insurance is unique, and you get to understand how they work. Overall, an insurance project is like a learning adventure where you become a detective, figuring out how to protect people from bad things that can happen in life.

Types Of Insurance Projects

Insurance projects encompass a wide range of endeavors designed to provide individuals and organizations with financial protection against various risks and uncertainties. These projects are essential in mitigating potential losses and promoting economic stability. Here are some common types of insurance projects:

1. Life Insurance Projects

Projects involving life insurance entail drafting policies that, in the case of the policyholder’s passing, give beneficiaries financial support. These policies can be term life insurance, whole life insurance, or universal life insurance, each with distinct features and benefits.

2. Health Insurance Projects

Health insurance projects focus on developing and managing policies that cover medical expenses, ensuring individuals have access to quality healthcare. These projects often include collaborations with healthcare providers and regulatory compliance.

3. Property and Casualty Insurance Projects

Property and casualty insurance projects deal with protecting individuals and businesses against property damage, liability, and legal expenses. Examples include homeowners’ insurance, automobile insurance, and liability insurance.

4. Commercial Insurance Projects

Commercial insurance projects cater to the unique needs of businesses, providing coverage for property, liability, and other specialized risks. This category includes commercial property insurance, business liability insurance, and workers’ compensation insurance .

5. Reinsurance Projects

Reinsurance projects involve insurance companies seeking coverage for their own risk exposure by transferring a portion of their policies to other insurers. This helps manage their financial stability and protect against catastrophic losses.

Importance Of Insurance Projects For Students

Here are some importance of insurance projects for students: 

1. Practical Learning

Insurance projects provide students with hands-on experience, helping them understand how insurance works in the real world. It’s like learning to ride a bike by actually riding one – students get to see insurance principles in action, making their knowledge more practical.

2. Risk Management Skills

These projects teach students about handling risks wisely. Just like a superhero who knows how to protect people from danger, students learn to protect businesses and individuals from financial risks by studying insurance.

3. Financial Literacy

Insurance projects help students become money-savvy. They learn how insurance can save people from big financial problems and how to manage their own money better in the future. Additionally, the advent of bizinsure Insurance Fintech is revolutionizing how these financial challenges are approached and resolved.

4. Problem-Solving Abilities

Students develop problem-solving skills when they explore different insurance scenarios. It’s like a puzzle where they figure out how to make things right when something goes wrong.

5. Career Opportunities

Understanding insurance through projects can open doors to various job opportunities in the insurance industry. It’s like having a map that shows them different paths to take in their future careers, making it an important step for their professional growth.

In this section we will discuss 120+ creative insurance project topics for students in 2023:

Life Insurance Project Topics

  • Actuarial Analysis of Life Insurance Policies
  • Consumer Behavior and Life Insurance Choices
  • The Impact of Medical Underwriting on Life Insurance Premiums
  • Assessing the Role of Life Insurance in Estate Planning
  • Evaluating the Tax Implications of Life Insurance Products
  • Analysis of Mortality and Morbidity Trends in Life Insurance
  • Innovation in Life Insurance Products: Trends and Implications
  • Market Penetration of Life Insurance in Developing Countries
  • Customer Retention Strategies in the Life Insurance Industry
  • Risk Management in Life Insurance Companies

Health Insurance Project Topics

  • Comparative Analysis of Health Insurance Plans
  • The Affordable Care Act’s Effect on Health Insurance Markets
  • Health Insurance Fraud Detection and Prevention
  • Telemedicine and Its Role in Health Insurance
  • Mental Health Coverage in Health Insurance Plans
  • Health Insurance and Healthcare Utilization Patterns
  • Long-Term Health Insurance: Needs and Challenges
  • International Perspectives on Health Insurance Systems
  • Health Insurance and Healthcare Disparities
  • Health Insurance and the Aging Population

Property and Casualty Insurance Project Topics

  • Catastrophic Risk Modeling in Property and Casualty Insurance
  • Claims Management and Fraud Detection in P&C Insurance
  • Data Analytics and Predictive Modeling in Property Insurance
  • Automobile Insurance Pricing and Risk Assessment
  • Climate Change’s Effect on Property Insurance
  • Cybersecurity Risks and P&C Insurance
  • Liability Insurance for Businesses: Coverage and Trends
  • Reinsurance Strategies in Property and Casualty Insurance
  • Telematics and Usage-Based Insurance in the Auto Industry
  • Emerging Risks in Property and Casualty Insurance

Commercial Insurance Project Topics

  • Risk Assessment in Commercial Property Insurance
  • Business Interruption Insurance: Claims and Controversies
  • Workers’ Compensation Insurance and Occupational Health
  • Liability Insurance for Small Businesses
  • Insurance Needs of the Hospitality Industry
  • Supply Chain Risk Management and Commercial Insurance
  • Insurtech Innovations in Commercial Insurance
  • Key Considerations for Commercial Property Valuation
  • Business Continuity Planning and Commercial Insurance
  • Commercial Fleet Insurance and Vehicle Safety

Reinsurance Project Topics

  • Reinsurance Market Dynamics and Trends
  • Risk Management Strategies for Reinsurance Companies
  • Catastrophe Bonds and Alternative Risk Transfer
  • Reinsurance Underwriting and Risk Selection
  • Retrocession and Its Role in Reinsurance
  • Reinsurance Pricing Models and Actuarial Methods
  • The Impact of Regulatory Changes on the Reinsurance Industry
  • Reinsurance and Solvency II Compliance
  • Mergers and Acquisitions in the Reinsurance Sector
  • Role of Reinsurance in Managing Emerging Risks

Specialty Insurance Project Topics

  • Specialty Insurance Products and Market Niche
  • Environmental Liability Insurance: Challenges and Opportunities
  • Kidnap and Ransom Insurance: Trends and Case Studies
  • Fine Art and Collectibles Insurance: Valuation and Coverage
  • Space Insurance and Coverage for Satellite Launches
  • Event Cancellation Insurance in the Entertainment Industry
  • Specialized Insurance Needs in the Energy Sector
  • Identity Theft and Cyber Insurance Coverage
  • Political Risk Insurance in International Trade
  • Unique Risks and Innovative Solutions in Specialty Insurance

Crop and Agriculture Insurance Project Topics

  • Crop Yield Risk Assessment and Insurance
  • Weather Index Insurance in Agriculture
  • Impact of Climate Change on Crop Insurance
  • Government Subsidies and Crop Insurance Participation
  • Crop Insurance and Sustainable Agriculture Practices
  • Challenges in Insuring Specialty Crops
  • Livestock Insurance and Disease Outbreaks
  • Precision Agriculture and Its Role in Crop Insurance
  • Agricultural Insurance and Food Security
  • Risk Management in Organic Farming and Agriculture Insurance

Marine and Aviation Insurance Project Topics

  • Maritime Insurance: Cargo and Hull Coverage
  • Marine Pollution and Liability Insurance
  • Aviation Insurance: Covering Aircraft and Airlines
  • Terrorism Risk and Aviation Insurance
  • Space Exploration and Insurance for Spacecraft
  • Drone Insurance and Regulatory Challenges
  • Maritime Piracy and Kidnap Insurance for Seafarers
  • International Shipping Risks and Marine Insurance
  • Aviation Underwriting and Risk Management
  • Environmental Liability in Maritime and Aviation Insurance

Environmental and Pollution Insurance Project Topics

  • Environmental Liability Insurance in Industrial Settings
  • Pollution Cleanup Costs and Insurance Coverage
  • Insurance Solutions for Environmental Contractors
  • Emerging Contaminants and Their Insurance Implications
  • Climate Change and Its Impact on Environmental Insurance
  • Regulatory Compliance and Environmental Liability Coverage
  • Environmental Insurance Market Trends and Challenges
  • Assessing and Managing Liability in Brownfield Sites
  • Green Building and Insurance for Sustainable Construction
  • Case Studies of Environmental Insurance Claims

Personal Insurance Project Topics

  • Homeowners Insurance: Coverage and Risk Assessment
  • Auto Insurance: Pricing, Coverage, and Discounts
  • Life Events and Personal Insurance Needs
  • Umbrella Insurance Policies: Coverage and Benefits
  • Personal Liability Insurance for Individuals
  • Renters Insurance: Importance and Coverage Options
  • Personal Property Insurance and Valuation
  • Pet Insurance: Trends and Coverage
  • Travel Insurance and Its Role in Vacation Planning
  • Insurance for High-Value Personal Assets and Collectibles

Legal Expenses Insurance Project Topics

  • Legal Expenses Insurance: Overview and Market Analysis
  • Legal Aid and Access to Justice through Insurance
  • Personal Legal Expenses Insurance: Benefits and Coverage
  • Litigation Funding and Legal Expenses Insurance
  • Insurance for Business Legal Expenses and Risk Management
  • Regulatory Compliance and Legal Expenses Insurance
  • International Perspectives on Legal Protection Insurance
  • Cyber Liability and Legal Expenses Coverage
  • Legal Expenses Insurance and Dispute Resolution
  • Ethics and Legal Expenses Insurance in the Legal Profession

Long-Term Care Insurance Project Topics

  • Long-Term Care Insurance: Market Trends and Challenges
  • The Growing Population’s Requirement for Long-Term Care Insurance
  • Medicaid and Long-Term Care: Interplay and Coverage Gaps
  • Hybrid Long-Term Care Insurance Products
  • Actuarial Considerations in Long-Term Care Insurance Pricing
  • Alzheimer’s Disease and Long-Term Care Planning
  • Regulatory Oversight of Long-Term Care Insurance
  • Family Dynamics and Long-Term Care Decision-Making
  • Home Care vs. Nursing Home Care: Insurance Implications
  • Claims Management in Long-Term Care Insurance

Cyber Insurance Project Topics

  • Cybersecurity Risks and the Need for Cyber Insurance
  • Data Breach Insurance: Coverage and Risk Assessment
  • Actuarial Models for Pricing Cyber Insurance
  • Cyber Risk Management and Insurance Solutions for Businesses
  • Regulatory Compliance and Cyber Insurance
  • Ransomware Attacks and Cyber Insurance Claims
  • Cyber Insurance Underwriting and Risk Selection
  • Emerging Cyber Threats and Insurance Implications
  • Cyber Insurance for Small and Medium-Sized Enterprises
  • Reinsurance Strategies in the Cyber Insurance Market
  • MBA HR Project Topics
  • Health Related Research Topics

Essential Things That Must Be Present In A Good Insurance Project Topics

Here are some essential things that must be present in a good insurance project topic:

1. Relevance

A good insurance project topic must be relevant to real-life situations. Just like a story that makes sense, the topic should address current insurance issues or needs, making it useful and meaningful.

2. Clear Focus

The topic should be like a flashlight in a dark room, helping students see their way. It must have a clear and specific focus so that students can explore it thoroughly without getting lost.

3. Research Opportunities

An ideal project topic should provide room for research. It’s like a treasure hunt, where students can dig deep and find valuable information to enrich their project.

4. Practical Application

The chosen topic should be something that can be applied practically. It’s like learning to cook a new recipe; students should be able to take what they’ve learned and use it to solve insurance-related problems.

5. Educational Value

Lastly, the topic should be educational, helping students learn new things about insurance. It’s like a book that’s not just interesting but also teaches valuable lessons, ensuring students gain knowledge and insights from their project.

Challenges Face By Students In Insurance Projects

Undertaking insurance projects can be an enriching experience for students, but it’s not without its challenges. These projects often require a deep knowledge of complex financial concepts, extensive research, and critical thinking. Here are some common challenges students may face:

  • Complex Terminology: Students may struggle with the jargon and technical language commonly used in insurance, making it hard to grasp the finer details.
  • Data Collection: Gathering accurate and relevant data for analysis can be time-consuming and demanding, especially when dealing with real-world insurance scenarios.
  • Mathematical Calculations : Insurance projects often involve intricate mathematical calculations , and errors can harm project accuracy.
  • Industry Knowledge: A lack of familiarity with the insurance industry and its evolving trends can pose a significant challenge in producing well-informed projects.
  • Resource Constraints: Limited access to resources like industry experts or databases can hinder in-depth research.
  • Analytical Skills : Interpreting and analyzing data can be challenging, especially for students with limited experience in statistics and data analysis.
  • Time Management: Balancing project work with other academic commitments can be daunting, as insurance projects demand thorough research and analysis.

Insurance project topics have shed light on the significance of these projects for students. We’ve discovered that insurance projects offer invaluable practical learning experiences, imparting essential skills like risk management and financial literacy. They provide doors to various opportunities and act as a stepping stone toward a future career in the insurance sector.

Furthermore, we’ve highlighted the crucial attributes of a good insurance project topic: relevance, focus, research potential, practical applicability, and educational value. With a repertoire of 120+ creative project ideas for 2023, students now have a roadmap to embark on their insurance learning journey. In the ever-evolving world of insurance, these projects empower students to navigate and contribute to this critical field.

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The impact of artificial intelligence along the insurance value chain and on the insurability of risks

  • Open access
  • Published: 08 February 2021
  • Volume 47 , pages 205–241, ( 2022 )

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research project on insurance company

  • Martin Eling 1 ,
  • Davide Nuessle 1 &
  • Julian Staubli 1  

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Based on a data set of 91 papers and 22 industry studies, we analyse the impact of artificial intelligence on the insurance sector using Porter’s ( 1985 ) value chain and Berliner’s ( 1982 ) insurability criteria. Additionally, we present future research directions, from both the academic and practitioner points of view. The results illustrate that both cost efficiencies and new revenue streams can be realised, as the insurance business model will shift from loss compensation to loss prediction and prevention. Moreover, we identify two possible developments with respect to the insurability of risks. The first is that the application of artificial intelligence by insurance companies might allow for a more accurate prediction of loss probabilities, thus reducing one of the industry’s most inherent problems, namely asymmetric information. The second development is that artificial intelligence might change the risk landscape significantly by transforming some risks from low-severity/high-frequency to high-severity/low-frequency. This requires insurance companies to rethink traditional insurance coverage and design adequate insurance products.

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Motivation and aim of the paper

There is a growing consensus on the potential of artificial intelligence to transform modern economies and societies (Abrardi et al. 2019 ; Bolton et al. 2018 ; Boyd and Holton 2017 ; Makridakis 2017 ) by enabling computer systems to carry out numerous tasks and activities that are typically considered to require human intelligence, thereby significantly improving efficiency and efficacy. At the same time, there is a controversial debate over the risks and limitations of artificial intelligence. Footnote 1

The progress and popularity Footnote 2 of artificial intelligence results from the combination of two developments that enable its productive use. The first is that artificial intelligence has matured, thanks to recent advancements in machine learning and deep learning algorithms (Abrardi et al. 2019 ). The second is that the availability of big data combined with the rapidly increasing computation power of modern information technology systems accelerates the development and increases the accuracy of artificial intelligence applications (Allam and Dhunny 2019 ; Thrall et al. 2018 ). As a result, considerable progress has been made in the capabilities of artificial intelligence in the last few years. Footnote 3 There is a wide range of real-world use cases across industries. Among these are pattern and anomaly detection (e.g. for fraud mitigation, see e.g. Ahmed et al. 2016 ), speech recognition and natural language generation (e.g. for the development of chatbots, see e.g. Dale 2016 ), recommendation engines (e.g. for automated product suggestions, see e.g. Marchand and Marx 2020 ), image recognition (e.g. for improved public safety, see e.g. Zhang et al. 2016 ), and automated decision-making systems (e.g. for robo-advice, see e.g. Faloon and Scherer 2017 ).

While some industries such as banking, Footnote 4 healthcare, Footnote 5 manufacturing Footnote 6 and software development Footnote 7 have been investing in artificial intelligence for years (Bughin et al. 2017 ), industry studies note that the insurance sector is lagging behind in the worldwide and intersectoral artificial intelligence movements (Rangwala et al. 2020 ; Deloitte 2017 ). Nevertheless, it is likely that artificial intelligence will have a broad impact along the insurance value chain, from underwriting and claims management over distribution and customer service to asset management. Consequently, insurance executives must understand the new technologies that will contribute to this change and how artificial intelligence can help organisations create innovative products, glean valuable insights from new data sources, streamline business processes and improve customer service.

The intention of this paper is to support practitioners in understanding the potential benefits associated with artificial intelligence applications and to motivate academics to study this multifaceted, controversial and heavily under-researched topic. Towards this end, we establish a database of papers and industry studies on the use of artificial intelligence in the insurance sector and systematically evaluate the impact of artificial intelligence along Porter’s ( 1985 ) value chain and on Berliner’s ( 1982 ) insurability criteria. Based on the review results, we derive potential future work from practitioners’ and researchers’ perspectives. In this way, we provide practitioners and academics with a high-level overview of the most important research topics and promote future work in this field. To structure our discussion, the paper is organised into three core steps:

Description of artificial intelligence applications that will influence the insurance sector.

Analysis of the impact of these applications along the insurance value chain and derivation of benefits for insurance companies as well as insurance customers.

Deduction of the consequences for the insurability of risks.

The remainder of this paper is structured as follows. We begin with a short description of our research methodology ( Research approach ). Then, the literature on the three core research topics is reviewed ( Survey of existing knowledge on artificial intelligence in insurance ). Finally, the results are summarised and potential areas of future work from both the industry and research perspectives are discussed ( Summary and derivation of potential future work ).

Research approach

Literature review.

The literature review consists of a structured search and identification process based on vom Brocke et al. ( 2009 ) and Webster and Watson ( 2002 ). We review the academic literature by using a search string that includes several keywords in combination with ‘insurance’ or ‘insurer’. The selection of keywords is based on Niu et al. ( 2016 ), who conducted a keyword analysis drawing on 20,715 articles on artificial intelligence published between 1990 and 2014. The keywords include terms for disciplines, subdisciplines, techniques and application areas of artificial intelligence. However, as some of the keywords are vague (e.g. ‘management’, ‘identification’, ‘optimisation’) and research on artificial intelligence has developed over the past five years, we have amended the keywords accordingly. Footnote 8 The keywords used in the literature review are summarised in Table  1 .

The literature search is conducted in the journal databases EBSCOhost (Business Source Ultimate, Computer Source and EconLit) and ABI/INFORM Collection. These databases were chosen because of their focus on business- and economic-related topics and because they include the relevant insurance-related journals. Footnote 9 The search process (1) was restricted to papers published from 2000 to June 2020, (2) focused on scholarly (peer-reviewed) publications and (3) searched for keywords in the abstract. The search process is displayed in Fig.  1 .

figure 1

Literature search process based on vom Brocke et al. ( 2009 ) and Webster and Watson ( 2002 )

In total, exactly 400 publications were found in the two databases. After their examination, 68 papers were identified as relevant for this literature review. A backward search, Footnote 10 as proposed by Webster and Watson ( 2002 ), was then conducted, where an additional 2056 sources were screened, and 23 relevant papers and 13 industry studies were found. Footnote 11 Another nine industry studies were identified by performing a regular Google search with the defined keywords. Based upon this selection process, a database of 91 papers and 22 industry studies (see Appendix B in the electronic supplementary material) is developed and the main results are extracted. The 91 papers consist of 86 journal articles and five trade journal articles. Based on their content, the papers were assigned to the respective stage in the insurance value chain (see Table B1 in the electronic supplementary material). Footnote 12 Industry studies could not be mapped to a single step of the value chain because they discuss the impact of artificial intelligence on the entire insurance industry and across the value chain, so for them a separate list (see Table B2 in the electronic supplementary material) has been created.

Conceptual frameworks: value chain and insurability criteria

Following Eling and Lehmann ( 2018 ), we use two conceptual frameworks to illustrate our results. The first, Porter’s ( 1985 ) value chain, distinguishes a firm’s primary from supporting activities in delivering a product or service; because Porter’s ( 1985 ) value chain was not formulated for a specific industry and was intended to be a rather general concept, we adapt it using the insurance-specific value chain by Rahlfs ( 2007 ) (see Fig.  2 ).

figure 2

Insurance-specific value chain based on Porter ( 1985 ) and Rahlfs ( 2007 )

We then analyse Berliner’s ( 1982 ) insurability criteria, a frequently used and comprehensive approach for differentiating insurable and uninsurable risks. Nine insurability criteria cover five actuarial, two market-specific and two societal aspects of insurability (see Table  2 ). This approach has been used, for example, by Biener et al. ( 2015 ) to analyse the insurability of cyber risks, by Charpentier ( 2007 ) to scrutinise the insurability of climate risks and by Gehrke ( 2014 ) to evaluate agricultural production risks. We refer to Berliner ( 1982 , 1985 ) and Biener et al. ( 2015 ) for further details on the criteria.

Survey of existing knowledge on artificial intelligence in insurance

The digitalisation Footnote 13 of the insurance industry is already quite advanced and has gone far beyond the transition from analogue to digital information processing (Stoeckli et al. 2018 ). Eling and Lehmann ( 2018 ) describe digitalisation as ‘the integration of the analogue and digital worlds with new technologies that enhance customer interaction, data availability, and business processes’. Digital transformation is also driven by InsurTechs, Footnote 14 which have emerged in the last decade (Riikkinen et al. 2018 ). New technologies affecting the insurance industry include cloud computing, Footnote 15 telematics, the Internet of Things (IoT), Footnote 16 mobile phones, blockchain technology, Footnote 17 artificial intelligence and predictive modelling (Cappiello 2020 ). Digitalisation has already had a considerable impact along the insurance value chain and will continue to do so as new technologies emerge and mature (Eling and Lehmann 2018 ). Footnote 18 Key changes comprise enhanced process efficiency, improved underwriting and product development, reshaped customer interactions and distribution strategies and new business models (Albrecher et al. 2019 ). Bohnert et al. ( 2019 ) show in their study that digitalisation activities have a significantly positive impact on the business performance of insurance companies. Footnote 19

At the beginning of the digitalisation wave, the main focus was on online and digital distribution channels (Garven 2002 ) and their impact on insurance agents (Eastman et al. 2002a , 2002b ), customers (Kaiser 2002 ) and competition (Brown and Goolsbee 2002 ). In the ensuing years, the ubiquity of mobile and interconnected devices exponentially increased the availability of customer data. Footnote 20 The extensive amount of available data has opened up new opportunities for insurance companies to apply innovative technologies for their benefit. For this reason, access to the vast amount of customer data forms the basis for numerous artificial intelligence applications and can be considered a precondition for the implementation of artificial intelligence by insurance companies.

What is artificial intelligence and which technologies will influence the insurance industry?

The first developments concerning artificial intelligence began more than 60 years ago with the construction of the first ‘thinking machines’: computer systems with human-like intelligence equalling, and at some point, exceeding that of human beings (Baum et al. 2011 ; Lake et al. 2016 ). To test a machine’s ability to exhibit intelligent, humanoid behaviour, the Turing test was invented (Turing 1950 ). Footnote 21 The first definitions of the term ‘artificial intelligence’ date from this time. However, as a result of the various conceptions and the rather vague nature of (human) intelligence, there is no widely accepted definition of artificial intelligence but rather a multitude of coexisting definitions (Wang 2019 ; see also Bhatnagar et al. 2018 ; Monett and Lewis 2018 ). Footnote 22

McCarthy ( 2007 ), who played a leading role in coining the term artificial intelligence in 1955, describes it as the science and engineering of manufacturing intelligent machines. Barr and Feigenbaum ( 1981 ) describe artificial intelligence in more detail as the part of computer science concerned with designing intelligent computer systems, systems that exhibit characteristics associated with intelligence in human behaviour such as understanding written and spoken language, learning, reasoning or solving problems. A survey by Monett and Lewis ( 2018 ) asked professionals and experts worldwide to comment on hundreds of definitions of artificial intelligence. The most accepted definition was Wang’s ( 2008 ): ‘The essence of intelligence is the principle of adapting to the environment while working with insufficient knowledge and resources. Accordingly, an intelligent system should rely on finite processing capacity, work in real-time, open to unexpected tasks, and learn from experience. This working definition interprets intelligence as a form of relative rationality.’ For the purpose of this paper, we base our understanding of artificial intelligence on Kelley et al.’s ( 2018 ) more comprehensive description of artificial intelligence as ‘a computer system that can sense its environment, comprehend, learn, and take action from what it is learning’. Footnote 23

The premise of artificial intelligence applications is to train computer systems with large amounts of data obtained through IoT and other big data sources to recognise patterns and apply their learned abilities to new data sets. The three types of artificial intelligence—categorised by their degree of intelligence Footnote 24 —are narrow, general and super (Kaplan and Haenlein 2019 ). Artificial narrow intelligence systems are trained to perform very specific physical or cognitive tasks; they operate within a limited context and a predefined range. In contrast, artificial general intelligence works on broader problem areas and has the capacity to assess its surroundings and give emotionally-driven responses comparable to those of humans. Artificial super intelligence systems, which exhibit the potential to outperform humans across a wide range of disciplines, have not yet been developed and are very likely still decades away (Jajal 2018 ). Table  3 summarises the three types of artificial intelligence.

Compared to classical rule-based systems, where data is strictly processed as initially defined through programming rules, artificial intelligence algorithms can learn and improve themselves independently based on past experiences (Kreutzer and Sirrenberg 2020 ). The method used to train these algorithms and thus realise artificial intelligence is machine learning. It consists of four types of learning: supervised, semi-supervised, unsupervised and reinforcement (Gentsch 2018 ; Kreutzer and Sirrenberg 2020 ). The most common type of machine learning is supervised learning, which requires humans to define each element of the input and output data. The algorithm is then trained to find the connection between the input and output variables of the data set, so that the answers are derived as precisely as possible. The second most common type is unsupervised learning, which does not include predefined output variables. The aim of the algorithms is to identify patterns and structures among the input variables independently. Semi-supervised and reinforcement learning are rather rare, and we refer to Kreutzer and Sirrenberg ( 2020 ) for their explanation.

Over the past few years, deep learning has gained increasing attention in artificial intelligence research. Deep learning, Footnote 25 which was not widely accepted as a viable form of artificial intelligence until 2012 (Krizhevsky et al. 2017 ), is a subset of (unsupervised) machine learning. While conventional machine learning techniques are limited in processing raw data, deep learning allows the processing of data from a wider range of data sources and requires less human effort to pre-process data (LeCun et al. 2015 ). Due to the increasing volume and complexity of data and the rapid development of modern computing, deep learning has recently become increasingly popular (Yu et al. 2018 ). Footnote 26 In the last decade, deep learning has made significant progress in numerous fields (Yuan et al. 2019 ) such as speech recognition (see e.g. Graves et al. 2013 ), image classification (see e.g. Rawat and Wang 2017 ; Yu et al. 2017 ; He et al. 2016 ), language translation (see e.g. Young et al. 2018 ), object recognition (see e.g. Krizhevsky et al. 2017 ) and detection (see e.g. Ren et al. 2017 and Redmon and Farhadi 2017 ), and has outperformed other machine learning techniques. Even though the predictive accuracy of artificial neural networks has greatly improved, the networks’ internal logic often remains inexplicable and incomprehensible due to their inherent complexity (Knight 2017 ; Castelvecchi 2016 ). Footnote 27 Most of the discussions among insurance practitioners with regard to applying artificial intelligence for parts of their value creation still focus on conventional machine-learning-enabled applications, as deep learning is still in the development phase and cannot yet be reliably deployed and implemented across a wide range of tasks (Panetta 2018 ). However, deep learning is expected to have a significant impact on the insurance industry as it requires very little human engineering to benefit from the increasing amount of available data and computation power.

To date, there is no common description of the different application fields of artificial intelligence. Some experts have created IT-related categories such as ‘machine learning’, ‘modelling’ or ‘problem-solving’ (see e.g. Görz et al. 2013 ; Russell and Norvig 2012 ). However, Kreutzer and Sirrenberg ( 2020 ) see machine learning and deep learning not as independent fields of application but rather as the basis of artificial intelligence usage. They define natural language processing, natural image processing/computer vision, expert systems and robotics as the four major application fields of artificial intelligence. They further note that many artificial intelligence applications, such as autonomous vehicles, represent a mixed form of these applications.

Table  4 summarises insurance-relevant artificial intelligence applications based on a systematic assessment of all the 91 papers and 22 industry studies (see Appendix B in the electronic supplementary material), explains them and maps specific industry use cases. The applications cover the full process from accessing to processing data and from evaluating to deploying data for enhanced decision-making or process optimisation. Many high-level applications across the value chain, such as automated claims management, combine multiple artificial intelligence applications such as text analysis and natural language processing, image and video analysis, as well as pattern and anomaly detection.

The use cases show that most applications in the insurance industry, ranging from the analysis of images of customers through the use of algorithms for the estimation of contractual terms for life insurance policies to the optimisation of fraud detection, aim to realise artificial narrow intelligence (weak AI) as they solve very specific tasks. In light of today’s insurance markets, insurance companies are thus more interested in applications of artificial narrow intelligence than in mimicking human intelligence (strong AI). The impact of more human-like artificial general intelligence on the insurance industry remains unknown as the technology is not yet fully understood and developed. For now, insurance companies should focus on the implementation of artificial narrow intelligence while monitoring the technological developments of artificial general intelligence. Most applications focus on specific areas of the value chain and are used for customer and operations efficacy: scenarios where the computational advantage, speed and accuracy of artificial intelligence are mainly levered. Using artificial intelligence to generate new insights or to reveal previously unknown results is more difficult to realise from a technological point of view (Deloitte 2017 ). Today’s most prominent use cases in this category are telematics-enabled usage-based insurance contracts in the health, motor and property and casualty segment. Footnote 28 Start-ups such as Oscar Footnote 29 use machine learning algorithms, for instance, to analyse claim data and make inferences about the frequency of certain activities and procedures doctors perform. Based on the results, Oscar is able to identify experts and specialists in certain treatments to refer policyholders to the most suitable hospital. As another example, Lemonade Footnote 30 is changing several links in the traditional insurance value chain by replacing brokers, underwriting agents, service employees and fraud detection experts with artificial intelligence systems.

What is the impact of artificial intelligence along the insurance value chain?

We continue our systematic assessment of all 91 papers and 22 industry studies to summarise the impact of artificial intelligence applications along the insurance-specific value chain (Table  5 ). Footnote 31

There are three principal categories of change initiated by artificial intelligence systems (see Eling and Lehmann 2018 ). The first is the way in which insurance companies interact with their customers (e.g. sales, customer service) is being transformed. While customer services traditionally required personal interaction with an agent, broker or bank for customer queries and product information due to a lack of alternatives, the information available has improved significantly over the internet and/or via chatbots. Some products can even be purchased online via chatbots without any personal interaction. This enables insurance companies to deploy human sales and customer service agents more effectively as chatbots take over some of their tasks. The insureds benefit through the availability of customer service and product information at any time and at a higher speed. Further along the value chain, digital technologies, such as apps, offer assistance and support claims reporting. Especially important is the use of artificial intelligence in risk reduction and prevention, for example, by proactive customer outreach in a risky situation. This enables the insurance industry to evolve from a ‘detect and repair’ to a ‘predict and prevent’ mode (Kelley et al. 2018 ). If implemented, this might lead to a completely new business model: preventing losses through a comprehensive risk management solution rather than compensating losses (The Geneva Association 2018 ). Such a development has the potential to decrease overall losses, which would not only benefit insurance companies and insureds, but also economic welfare.

The second change is the automation of business processes (e.g. processing of contracts, reporting of claims) and decisions (e.g. underwriting, claim settlement, product offerings). While transaction-intensive industries such as health insurance are already using background processing, the use of big data and artificial intelligence will stimulate a further wave of automation. The biggest benefits of automation for insurance companies are potential cost savings. Furthermore, a higher accuracy for administrative repetitive tasks can be achieved by eliminating human errors and skilled employees will have more time to concentrate on truly value-adding tasks. Automation in the reporting and settlement of claims will accelerate business processes, leading to greater customer satisfaction. As artificial intelligence applications can process and analyse large amounts of data generated by telematic devices, social networks or other internet sources (e.g. customer feedback, pictures, videos) in, for example, the underwriting process, insureds may have to answer fewer questions, which increases their satisfaction and hence has a positive impact on customer retention. One major challenge with the use of big data and artificial intelligence in this context is the accompanying ethical and legal issues. These include discussions about the extent to which insurers are allowed to use all of the generated data for decision making, how long the data has to be retained and which actions insurers must take to protect the data against, for instance, cybercrime (Hussain and Prieto 2016 ).

While the first two categories of change are closely related to the impact of artificial intelligence along the insurance value chain, as discussed in Table  5 , the third category includes fundamental changes in insurance markets, which have not been discussed so far. The development of artificial intelligence will not only create new insurance markets and new risks but also cause certain existing markets to disappear (The Geneva Association 2018 ). One obvious example is autonomous driving, which changes the nature of liability in the automotive industry. Who is liable in case of an accident: the passenger, the car manufacturer or the software developer of the artificial intelligence algorithms? This development questions whether traditional car insurance, as we know it today, will still exist in the future. Cyber risks arising from the use of artificial intelligence technologies are also generating new market opportunities, with some industry studies predicting that cyber risk insurance might become the largest non-life segment in 2032 (e.g. KPMG 2018 ).

In addition to the impact of artificial intelligence in each single stage of the insurance value chain, the combination of these changes will have profound implications for the entire insurance landscape. The increasing prevalence of digital technologies in society causes traditional industry borders to blur. The resulting ecosystems will significantly influence the future of the insurance industry. Footnote 32 Ecosystems can be understood as ‘an interconnected set of services that allow users to fulfil a variety of needs in one integrated experience’ (Catlin et al. 2018 ). The most relevant ecosystems for the insurance industry include the mobility, home and health ecosystems. These ecosystems offer insurance companies the opportunity to not only enter new revenue streams by reconsidering their traditional roles in the economy but also to integrate their insurance products into seamless customer journeys (Lorenz et al. 2020 ). While insurance companies currently have a passive and limited relationship with insureds, the emergence of ecosystems might cause significant changes in the way they interact with customers and how they distribute their products and services. In the mobility ecosystem, for example, insurance companies face the opportunity to expand their services to areas such as the purchase of vehicles, parking, traffic management and car sharing (Catlin et al. 2018 ). The potential benefits of ecosystems for insurance companies further include increased customer retention, improved loss prevention to reduce claims and lower distribution costs (Lorenz et al. 2020 ).

Table  6 summarises the major benefits of artificial intelligence applications for insurance companies and customers along the value chain. The results in Table  6 are derived from our findings in Table  5 . As previously mentioned, the reduction of insurance costs—whether through decreasing loss payments or transaction costs—is beneficial both for the shareholders of insurance companies and for the insureds. Lower insurance costs will increase the insurer’s profitability, leading to a higher shareholder value, but will also reduce premiums if passed on to the insureds (which can be assumed in competitive markets). Regardless of which case occurs (depending on the competitive situation), the reduction of insurance costs ultimately leads to an increase in economic welfare.

How does artificial intelligence influence the insurability of risks?

Table  7 summarises the expected influence of artificial intelligence on the insurability of risks structured along Berliner’s ( 1982 ) insurability criteria. The results in Table  7 are deduced from our results in Tables  4 and 5 . The assessment distinguishes between (a) the application of artificial intelligence by insurance companies themselves and (b) the changes in the risk landscape triggered by artificial intelligence. The results show that the application of artificial intelligence by insurers does not compromise but rather improves the insurability of risks. The only exception is criterion 8, public policy, which remains unclear as the application of artificial intelligence implies increased transparency of policyholders’ sensitive data, which potentially raises ethical and moral questions. However, the change in the risk landscape as a result of the increasing implementation of artificial intelligence poses many challenges to the insurability of risks and raises numerous questions for all insurability criteria.

The heterogenous results underline that a clear distinction between the application of artificial intelligence by insurers and the changes in risks triggered by artificial intelligence is of utmost importance. For this reason, we divide our subsequent discussion into these two categories.

Application of artificial intelligence by insurers

In light of today’s insurance markets, the application of artificial intelligence by insurance companies shows three major effects in the context of the insurability of risks. The increasing availability of detailed risk-relevant information about policyholders through historical and real-time data sets will change traditional actuarial risk assessment and pricing models. The granular analysis of texts, images and videos from internal and external databases, as well as from connected devices (i.e. telematics devices and health wearables), allows insurance companies to more accurately estimate and predict loss probabilities and loss amounts on an individual level. This enables insurance companies to distinguish good and bad risks more precisely and thus reduce adverse selection. Additionally, it might even give those with bad risks an incentive to increase loss prevention efforts or to change their behaviour; hence, it also reduces moral hazard (e.g. usage-based insurance products). It further allows insurance companies to form small and homogenous risk groups with accurate and adaptive premium pricing schemes for each policyholder as risk-relevant behaviour, including prevention effort, is transparent and directly measurable. Consequently, bad risks will pay a higher and good risks a lower premium. This, however, raises questions related to the affordability of premiums for bad risks, which potentially contradicts insurance criterion 6.

In addition, the acquisition, processing and storage of sensitive customer data by insurance companies must be compliant with data privacy and security laws, as well as with moral and ethical considerations. Sensitive customer data is the basis of numerous artificial intelligence applications and it is thus crucial for insurance companies to ensure compliance with legal frameworks (e.g. GDPR). For this reason, responsible data management can be considered a precondition for a successful implementation of artificial intelligence. Another critical precondition is public policy, especially social and ethical considerations. The problem of discrimination caused by artificial intelligence was recently demonstrated by Amazon’s recruiting algorithm; its rating of candidates for software developer jobs showed bias against women. Footnote 33 Hence, a transparent and anti-discriminatory application of artificial intelligence is crucial to gain the willingness of insureds to entrust their sensitive data to an insurer.

Finally, new risks become insurable with the implementation of artificial intelligence. Automated and continuous underwriting reduces transaction costs and will enable the extension of On-Demand insurance for various assets. Examples could include additional insurance coverage for personal belongings against theft or damage, Footnote 34 travel insurance and by-the-mile car insurance. Insurance coverage can thus be purchased for a wide range of low-severity risks for the time the asset is actually used and ‘at risk’. Additionally, loss assessments of an insured event can be significantly accelerated by artificial intelligence, which accelerates the claims management process and the corresponding payments. Thereby, the most severe risks, such as crop insurance against natural disasters, can be covered by insurance companies. Footnote 35 Consequently, artificial intelligence applications by insurers push the boundaries of insurability as several low- and high-severity risks become insurable.

Changes in risks triggered by artificial intelligence

The insurance market of the future will be shaped by numerous everyday artificial intelligence applications. For example, self-driving vehicles and healthcare with proactive, real-time and data-driven analysis of health status will emerge. This development will have a significant impact on the risk landscape and has two major implications for the insurability of risks. Artificial intelligence applications have the potential to transform the nature of loss events. Given the example of autonomous driving, the total number of accidents is likely to be considerably reduced, implying much lower loss probabilities (contradicts insurability criterion 4). However, a breakdown of the underlying artificial intelligence system or a hacking attack can cause a cascading series of accidents resulting in a considerable increase in the maximum possible loss (contradicts insurability criterion 2). Hence, loss events are not independent due to increasing connectedness (contradicts insurability criterion 1) and the shift from high-frequency/low-severity to low-frequency/high-severity risks. Similar concerns are discussed by Biener et al. ( 2015 ), who concluded that accumulation risk Footnote 36 poses a major hurdle to the insurability of cyber risks. A potential way to reduce accumulation risk and ensure sufficient independency of loss events could be the diversification of applied artificial intelligence systems, which would improve insurability. High-severity risks also require very high cover limits and premium payments, which could contradict insurability criteria 6 and 7. Hence, insurance companies are challenged to revise traditional insurance coverage and design innovative insurance products.

In addition, ethical and legal aspects of artificial intelligence arise whenever algorithms have to make difficult decisions (e.g. whether a malfunctioning autonomous vehicle should strike a child or a group of adults, i.e. Foot’s trolley problem, see e.g. Nyholm and Smids 2016 ), thereby raising liability issues (see e.g. Jarrahi 2018 ). Autonomous vehicles can demonstrate the potential safety problems related to artificial intelligence applications in everyday life. A fatal collision between an artificial-intelligence-controlled Uber vehicle and a pedestrian in Arizona in 2018 exemplifies this statement (see e.g. National Transportation Safety Board 2019 ). Furthermore, the data processed in artificial intelligence algorithms and the obtained insights raise questions regarding data security and protection (i.e. data access and usage). The need to regulate companies that develop and use artificial intelligence is evident. The use of algorithms ranges from autonomous vehicles to decision support systems in the health sector, as well as in artificial-intelligence-powered weapon systems. National and international institutions are responsible for developing guidelines for a fair and appropriate handling of artificial intelligence applications. However, the demands for transparency, non-discrimination and fairness clearly show the limits of the application of artificial intelligence as some principal dilemmas cannot be resolved. For example, the way in which machine learning arrives at the respective conclusions has never been—and due to the technical peculiarities will never be—completely transparent. Another ethical dilemma arises in the context of the fairness of artificial intelligence. An activity that a company or public authority considers fair might not have to be fair from the perspective of the consumer or citizen.

Despite all these concerns, the enormous potential of artificial intelligence must not be ignored. There still has not been an appropriately broad discussion of the limitations and concerns that reflects the relevance of the topic. However, as the technology is already being implemented and will have a profound impact on our everyday life, urgent action is required.

Summary and derivation of potential future work

We provide an overview of various artificial intelligence applications within the insurance industry and analyse their impact along the insurance-specific value chain based on Porter ( 1985 ) and in light of the insurability criteria developed by Berliner ( 1982 ). Table  8 summarises the results of the three core topics discussed in the previous section. Based on these results, we identify potential areas of future work from both an academic and practical perspective.

The numerous entry points illustrate that artificial intelligence has the potential to change many activities across the insurance value chain. The main opportunities for value generation will evolve around process automation (leading to cost savings and thus margin expansion) and the use of additional customer insights for entering new revenue streams, acquiring new customers and more personalised interactions with existing customers (leading to revenue growth). Today, the adoption of artificial intelligence within insurance markets is in its earliest stages and the academic research on the implications of artificial intelligence on the insurance business model is still limited. However, the topic is attracting increasing attention and interest from practitioners worldwide, as illustrated by the rapidly growing and generously funded InsurTech sector. Footnote 37 The present paper helps practitioners navigate their organisations to take full advantage of the benefits of artificial intelligence, and motivates academics to pave the way for a successful adoption of artificial intelligence by answering important research questions and running empirical analyses that go beyond the scope of this paper.

Today’s artificial narrow intelligence systems are trained to perform only very specific tasks (e.g. a chess computer cannot play poker). Of course, weak artificial intelligence is not the ultimate goal of the tech companies that are investing billions of dollars in the development of the technology. They try to develop artificial general intelligence systems that are capable of abstract and creative thinking and making judgements under conditions of uncertainty (Uj 2018 ). Without knowing if the development of these artificial intelligence systems is actually possible, experts expect the first system to be ready in the next 10 to 30 years (Uj 2018 ). Given this vague time horizon, insurance managers, policymakers and regulators need to focus on the technology that is in place now (i.e. artificial narrow intelligence or weak AI). At the same time, it is important to track technological development and to continuously update potential management and regulatory frameworks in this dynamic field of research and practice.

From a scientific point of view, the changes in asymmetry of information and the associated economic welfare effects are intriguing. Linked to this is the question regarding the value of data from the customer’s and provider’s points of view. Thus, in the face of a latent fatalism in dealing with data, it is not quite clear what privacy is worth from the customer perspective (Biener et al. 2020 ). Positive effects of artificial intelligence applications on economic welfare can also be found in the field of prevention at the collective level when it comes to better understanding large amounts of data and using them for the benefit of customers. On an individual level, however, welfare effects are not negligible, because there may be both winners and losers in digital monitoring by artificial intelligence systems.

Several shortcomings of this paper might motivate future research. One is the generalisation of the analysis to the entire insurance sector. This offers both practitioners and academics a sense of the scope of the topic, but it lacks accuracy and applicability, because insurance segments and product lines are heterogeneous. Consequently, a detailed analysis of artificial intelligence on single steps of the value chain for each major type of insurance or the evaluation of upcoming artificial intelligence trends (e.g. neural networks that pave the way to the development of artificial general intelligence) on the insurance sector could be interesting. Moreover, we show some future scenarios where insurers could become enablers of social good, like increased longevity and improved public safety. It would be interesting to analyse the role of the insurance sector in combatting significant societal challenges in health and elderly care. For example, a steadily increasing number of elderly people are living with chronic diseases and require personal care services. However, the number of care professionals and doctors is not keeping pace with the growth of this population. Research can include the role of artificial intelligence applications, such as health nanobots, tracking devices and chatbots, to support health and elderly care.

A second shortcoming is the analysis of insurability criteria, which are somewhat vague because of missing empirical evidence. Consequently, our assessment serves as an indicator of whether or not single criteria are likely to be contradicted by the implementation of artificial intelligence. So far, no academic studies have directly analysed the effects of artificial intelligence on important actuarial metrics such as adverse selection, moral hazard and risk pooling or market criteria. From a practitioner's perspective, the question is still open as to whether better risk-based calculation of premiums will lead to lower combined ratios as both losses and the collected premiums are expected to move in tandem. It might lead to better insurance products with higher customer value, but it is not entirely clear if artificial intelligence is Pareto-optimal in the sense that every client will profit from the increasing use of artificial intelligence. From a general welfare point of view, we would expect to profit if artificial intelligence reduced the number of claims, but there is no overall assessment yet. The paper also highlights the importance of societal insurability criteria, but a detailed analysis goes beyond the scope of this paper as several external factors are likely to be relevant.

Further thoughts have led us to the following open questions: What is the role of insurance companies when technology firms dominate access to data? How will insurance companies react if data and privacy regulation become more restrictive and prohibit the use of policyholders’ personal information? Will self-driving vehicles and health nanobots transform risks to the extent that the traditional idea of insurance comes into question? Will the public perception and brand image of insurance companies suffer as people become uncomfortable with constant surveillance? Will increased transparency and usage-based pricing lead to less solidarity in the context of social insurance? Will this lead to social unrest if high-risk policyholders can no longer afford insurance? Or will good risks try to opt out of traditional insurance pools with cross-subsidisation across risk classes (e.g. in social security schemes)? These questions will have a direct impact on insurance corporations over the next few years, so it is important for insurance executives to start thinking about these scenarios today.

In 2014, Stephen Hawking stated that ‘success in creating effective AI [artificial intelligence], could be the biggest event in the history of our civilization. Or the worst. We just don’t know’ (Kharpal 2017 ).

Figure A1 in Appendix A in the electronic supplementary material illustrates the exponential growth in the academic interest of artificial intelligence by showing the development of published articles on the subject in Web of Science from 1980 to 2019.

In 2016, the programme AlphaGo defeated a human professional player for the first time in the full-sized game Go (Silver et al. 2016 ). Only 14 years earlier, this was believed to be impossible due to the complexity of the game compared to, for example, chess (MĂŒller 2002 ).

See e.g. Jakơič and Marinč ( 2019 ) on the role of artificial intelligence in the banking sector.

See e.g. Jiang et al. ( 2017 ) and Patel et al. ( 2009 ) for an overview of artificial intelligence in medicine.

See e.g. Li et al. ( 2017 ) and Lee et al. ( 2018 ) for applications of artificial intelligence in manufacturing.

See e.g. Kothari ( 2019 ) for an overview of artificial intelligence applications in software engineering processes.

See MartĂ­nez-Plumed et al. ( 2018 ) for a discussion of the keywords provided by Niu et al. ( 2016 ).

For example, The Journal of Finance , American Economic Review , Journal of Risk and Insurance , Insurance: Mathematics and Economics , The Geneva Papers on Risk and Insurance—Issues and Practice , The Geneva Risk and Insurance Review , Journal of Insurance Regulation and Risk Management & Insurance Review .

A backward search is the process of screening the references of the initially identified papers.

Moreover, all working papers from the annual meetings of the American Risk and Insurance Association (ARIA; for 2012 to 2019), the 2015 World Risk and Insurance Economics Congress and the European Group of Risk and Insurance Economists conferences 2011, 2012, 2013 and 2016 are examined. Surprisingly, no additional sources were identified through this examination, emphasising that there is still a lack of research on these topics in the risk and insurance community.

The focus of research on artificial intelligence in the insurance sector is on claim management and underwriting and pricing. A quantitative examination of the number of identified papers per stage of the value chain shows that 38% of the 91 papers address the application of artificial intelligence in claim management, while 26% assess the usage of artificial intelligence in underwriting and pricing. The other value chain stages have a percentage share below 10%, indicating that the application of artificial intelligence in these areas is still heavily under-researched (see Table C1 in Appendix C in the electronic supplementary material for more details).

Digitalisation is often used interchangeably with digitisation (see e.g. BarNir et al. 2003 ). However, a clear distinction should be made between the two. While digitisation is the technical process of converting analogue data into digital forms, digitalisation describes the adoption of digital technologies in various contexts (Legner et al. 2017 ). These two developments lead to digital transformation, which triggers profound changes in business and society (Majchrzak et al. 2016 ; Vial 2019 ).

InsurTech encompasses the emerging technologies, innovative business models, applications, processes and products that might transform the traditional insurance sector (International Association of Insurance Supervisors 2017 ). For an overview of the InsurTech landscape see e.g. Braun and Schreiber ( 2017 ).

See e.g. Akhusama and Moturi ( 2016 ) who analysed cloud computing uses in terms of productivity applications, business applications, infrastructure on-demand, finance applications, core business applications and databases in insurance companies in Kenya.

The Internet of Things can be defined as a ‘collection of smart devices that interact on a collaborative basis to fulfil a common goal’ (Sicari et al. 2015 ).

See e.g. Gatteschi et al. ( 2018 ) for a discussion on several blockchain use cases in the insurance sector.

See also The Geneva Association ( 2018 ) for a discussion of the impact of digital technologies on insurance and the role of insurance in an increasingly digitised economy.

See Bohnert et al. ( 2019 ) for an analysis of the relationship between the expression of a digital agenda in annual reports and the business performance of 41 publicly-traded European insurance companies for the time period 2007 to 2017.

The collected data include traditional, structured, transactional data as well as contemporary, unstructured, behavioural data, commonly referred to as ‘Big Data’ and characterised by its volume, velocity, variety, veracity and value (Erevelles et al. 2016 ; Lycett 2013 ). Big Data might, for example, simplify the detection of insurance fraud (Bologa et al. 2013 ).

Turing ( 1950 ) proposed that a machine has reached intelligent behaviour once a human evaluator cannot tell whether or not he or she was engaged in natural conversation with another human or with a machine.

See Wang ( 2019 ) for a discussion of the difficulties in defining artificial intelligence.

See Appendix D in the electronic supplementary material for a summary of definitions of artificial intelligence.

There are many definitions of intelligence. Grewal ( 2014 ) defines intelligence as ‘a general mental ability for reasoning, problem solving, and learning’. The term intelligence generally refers to the ability to acquire and apply different skills and knowledge to solve a problem (Neisser et al. 1996 ).

See e.g. LeCun et al. ( 2015 ). In a deep learning neural network, a digitised input (e.g. an image or speech) proceeds through multiple layers (typically from 5 to 1000) of connected ‘neurons’, of which each responds to a different feature of the input and an output is ultimately provided (Topol 2019 ). Neural networks are defined as ‘neuron-like processing units that collectively perform complex computations’ (Lake et al. 2016 ). As the name suggests, this artificial intelligence method originates in neuroscience. Initially, research on artificial intelligence was intertwined with neuroscience and psychology (Churchland and Sejnowski 1988 ; Marblestone et al. 2016 ). The first attempts to construct artificial neural networks that could compute logical functions were made in the 1940s (McCulloch and Pitts 1943 ). There are manifold types of deep learning neural network algorithms. For reviews see e.g. Goodfellow et al. ( 2016 ) and Yu et al. ( 2018 ).

Unlike classical neural networks, deep learning applies more hidden layers, resulting in superior processing of complex data with manifold structures (Goodfellow et al. 2016 ).

Due to these opaque decision-making systems, deep learning is often described as a ‘Black Box System’ (Guidotti et al. 2018 ).

See e.g. Ayuso et al. ( 2019 ) for a discussion on improving automobile insurance ratemaking using telematics by incorporating mileage and driver behaviour data.

https://www.hioscar.com/ .

https://www.lemonade.com/ .

In Appendix E (see electronic supplementary material), we combine Tables  4 and 5 into a ‘value chain and technology matrix’.

Catlin et al. ( 2018 ) expect the emergence of 12 major ecosystems which will account for approximately USD 60 trillion in revenues by 2025. This highlights the significant impact of ecosystems on the global economy.

See e.g. Dastin (2018).

Insuring certain assets against theft with an On-Demand insurance product could be especially attractive during a short vacation.

An example is the RIICE project, which provides satellite-based crop production monitoring. The assessment of an insured event can be completed more quickly and at relatively lower costs than the previous process of loss assessors travelling to the area and assessing the damage on site. See http://www.riice.org/about-riice/about-riice/ .

Accumulation risk is the problem of emerging dependencies of risks through increasing interconnectedness. Given the scenario that all self-driving vehicles were manufactured by a few industry leaders and use the same software, algorithms and data infrastructure, a system breakdown, software malfunctions due to data transmission problems or cybercrime activities can paralyse city traffic and lead to simultaneous loss events in which all risks are dependent.

Total InsurTech funding volume has soared from USD 869 million in 2014 (94 deals) to over USD 6.3 billion (314 deals) in 2019 (CB Insights 2020 ).

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Eling, M., Nuessle, D. & Staubli, J. The impact of artificial intelligence along the insurance value chain and on the insurability of risks. Geneva Pap Risk Insur Issues Pract 47 , 205–241 (2022). https://doi.org/10.1057/s41288-020-00201-7

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Insurance Final Year Project Topics and Research Areas

View Project Topics

Insurance final year project topics and research areas encompass a broad spectrum of issues within the insurance industry that students can explore in their final year projects. These topics delve into various aspects of insurance, ranging from risk management and actuarial science to emerging technologies and regulatory challenges. By investigating these areas, students can gain valuable insights into the complexities of the insurance sector and contribute to the advancement of knowledge in the field.

Introduction: Exploring Diverse Topics in Insurance Research

In the final year of an insurance-related academic program, students often undertake research projects that allow them to apply their knowledge and skills to real-world challenges faced by the insurance industry. These projects not only provide an opportunity for students to demonstrate their understanding of core concepts but also encourage them to critically analyze current issues and propose innovative solutions. From studying the impact of climate change on insurance to examining the role of artificial intelligence in underwriting, the possibilities for research topics are vast and varied.

Table of Content

  • Risk Management in Insurance
  • Actuarial Science and Predictive Modeling
  • Emerging Technologies in Insurance
  • Regulatory Compliance and Policy Issues
  • Customer Behavior and Marketing Strategies

1. Risk Management in Insurance

Research in this area focuses on understanding and managing risks inherent in insurance operations. Topics may include the assessment of catastrophic risk, the development of risk mitigation strategies, and the evaluation of alternative risk transfer mechanisms such as reinsurance and securitization. By investigating risk management practices, students can explore how insurers quantify and price risk, as well as the implications of risk exposure on profitability and solvency.

2. Actuarial Science and Predictive Modeling

Actuarial science plays a crucial role in the insurance industry by providing insights into pricing, reserving, and risk assessment. Projects in this area often involve the application of mathematical models and statistical techniques to analyze insurance data and make informed decisions. Students may explore topics such as mortality and morbidity modeling, reserve estimation methods, and the use of predictive analytics for underwriting and claims management.

3. Emerging Technologies in Insurance

Advancements in technology are transforming the insurance landscape, presenting both opportunities and challenges for insurers. Research topics in this area may include the adoption of blockchain for secure transactions, the use of telematics devices for usage-based insurance, and the development of AI-powered chatbots for customer service. By investigating emerging technologies, students can assess their potential impact on insurance operations, customer experience, and market dynamics.

4. Regulatory Compliance and Policy Issues

Insurance is a highly regulated industry, and compliance with regulatory requirements is essential for insurers to operate ethically and sustainably. Research in this area may focus on understanding regulatory frameworks such as Solvency II, GDPR, and IFRS 17, as well as examining the implications of regulatory changes on insurance business practices. Students may also explore ethical dilemmas and public policy issues related to insurance, such as access to affordable coverage and the role of government intervention.

5. Customer Behavior and Marketing Strategies

Understanding consumer behavior is critical for insurers seeking to attract and retain customers in a competitive marketplace. Research topics in this area may include the analysis of consumer preferences and purchasing decisions, the effectiveness of marketing campaigns and distribution channels, and the impact of digitalization on customer engagement. By studying customer behavior and marketing strategies, students can gain insights into how insurers can better meet the needs of their target market and enhance customer satisfaction and loyalty.

In conclusion, insurance final year project topics and research areas cover a wide range of issues relevant to the insurance industry. From risk management and actuarial science to emerging technologies and regulatory compliance, students have the opportunity to explore diverse facets of insurance and contribute to the advancement of knowledge in the field. By undertaking research projects in these areas, students can develop valuable skills, gain practical experience, and make meaningful contributions to addressing the challenges and opportunities facing the insurance industry.

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  • Indemnity Dental Insurance: Pros and Cons The carrier processes payments to the plan member or to the dentist only after the insurance entity receives and reviews the dentist’s bill.
  • Hull and Machinery Insurance and Protection and Indemnity Clubs Hull and Machinery and Protection and Indemnity insurance policies complement each other, while the captive insurance altogether provides control to ship owners.
  • Moral Hazard in Healthcare Insurance Moral hazard in health insurance refers to the additional medical care that an individual gets on the basis of higher insurance coverage.
  • The Health Care Insurance Supervisor: Job Description The job description covered most of the aspects of my roles as the supervisor at healthcare insurance organization.
  • Limited Access to Health Insurance for Low-Income Families The purpose of this report is to consider the problem of the high uninsured rate in the US and propose a possible solution.
  • Property Casualty Insurance This discussion assesses the property casualty insurance where such vices as accidents to the employees and loss of funds due to negligence can arise.
  • Is Insurance a Right or a Privilege? The purpose of this article is to address the problems of the US health care system related to unequal access to health care.
  • Allstate Insurance Company’s Diversity Goals Allstate insurance company is one of the companies in the world that are enjoying the benefits of having set diversity management as one of its strategic goals.
  • Life Insurance: Theory and Practice Life insurance can be defined as the contract between the insurer and the person owns the policy. Some countries include some events like bills and death expenses are included in the premium policy.
  • The Insurance-Based Inequity Discussion Humanity continues to fight cancer, trying to prevent people’s deaths. From 1991 to 2018, the cancer death rate in the United States decreased by more than thirty percent.
  • Insurance Data Processing and Storage: Edge Computing Insurance companies employ large amounts of data to set premiums for premiums, which can be processed by the edge computing paradigm’s fast, secure and reliable infrastructure.
  • Abolishing Out of Pocket Healthcare Insurance The paper discusses out-of-pocket healthcare. It refers to a mode of healthcare payment that entails using one’s own money to purchase health services.
  • Hourly or Specific Days Insurance Policy Coverage The essay overviews the emergence of usage-based insurance policies, how they changed the situation for insurance companies and how competitive this type of market is.
  • Homeowners Insurance Policy The paper will discuss the contractual components of a home insurance policy together with its general contents and coverage.
  • Using Mau Technique for Choosing an Insurance Package Four coverage plans were analyzed, taking into account performance reports, which show the core segments’ quality of services.
  • Maritime Insurance: A Case Study Law Report Operations in the maritime industry are characterised by threats that may lead to financial losses. Some of them include piracy, fire, and bad weather.
  • McKinsey & Company: State Farm Insurance Assessment In this paper, McKinsey & Company is to be discussed as a management consulting firm that deals in consultancy, especially at senior management levels.
  • Health Promotion: Health Insurance Costs Reducing Health promotion is targeted towards increasing the control over the health of the target audiences as well as the improvement of their health.
  • Captive Insurance as a Risk Management Tool Captive insurance is a type of insurance where the insurer fully owns the company, which provides services to the parent company, majorly risk mitigation.
  • Health Insurance and Medicare for All Medicare for All, introduced by a wing of the Democratic party, accounts for one national health insurance program for all Americans with a fundamental right to healthcare.
  • Mandating Employer-Provided Insurance The long-term effects of mandating employer-provided insurance, such as healthcare or other benefits, may be detrimental to low-paid workers.
  • State Health Insurance Marketplace in Pennsylvania Pennsylvania launched its health insurance exchange in 2021. The paper evaluates Pennsylvania’s public exchange, its services, and its effectiveness.
  • Health Insurance and Inaccessibility in the US The inaccessibility of social health insurance in the U.S. to some segments of the population is a general global problem affecting everyone in the country.
  • Analysis of Health Insurance in Texas, USA Health insurance has a unique role in the transformation of the modern healthcare system of the United States because provides coverage of medical services.
  • Health Insurance and the Affordable Care Act The paper provides a commerce clause brief, as held by various Supreme Court judges, by defending the position that Congress has no constitutional power.
  • Social Insurance Program Importance Social insurance programs are more effective since they provide social security for the basic income to those in their later years.
  • Revisions of Health Insurance Portability and Accountability Act Health Insurance Portability and Accountability Act improves the accountability of health insurance. It benefits stakeholders: patients, healthcare workers, and the whole system.
  • Insurance Financial Advising Concepts The job of insurance financial advising is to offer clients consultation on their capital. A special plan is developed that meets the lifestyle of a particular person.
  • An Agent-Based Model of Flood Risk and Insurance This paper provides all essential information concerning the nature of property and liability insurance along with its core principles.
  • Healthcare Insurance Organizations’ Risk of Fraud Today, numerous companies are experiencing problems resisting illegal actions and suffering losses because of their consequences.
  • Health Maintenance Organization Insurance Health Maintenance Organization is a healthcare insurance plan that commonly confines coverage to care from physicians who work for the HMO insurance.
  • Expanding Medicare and Medicaid into a National Health Insurance System The paper analyzes the reasons why the national healthcare insurance program should be implemented and presents critics on how the initiative should be realized.
  • Health Insurance Coverage in Florida Health insurance coverage is comprehensive coverage on the means of financing an individual’s healthcare expenses.
  • Life Insurance Inc.’s Yes2Life Mobile Application This report presents the documented design of the Yes2Life mobile application for Life Insurance Inc. based in Brisbane Australia.
  • The Role of Business Ethics in Insurance Companies Business ethics remains a rather relevant issue for the insurance business, as the latter participates in programs for the implementation of corporate social responsibility.
  • The Emergence of Private Health Insurance The study of the issue of the emergence of private health insurance and how it arose in society has exceptional value for study.
  • Healthcare Insurance in the USA The healthcare policies on insurance coverage in the USA need to benefit all people. The paper discusses insurance healthcare policies as social welfare concept.
  • National Health Insurance in the United States In this paper, attention will be paid to the history of the U.S. healthcare system, current reimbursement methodologies, technological advancements, and costs.
  • Social Welfare Policy and Healthcare Insurance Healthcare insurance must be more affordable; in the modern US, low-income people, especially immigrants, are uninsured and cannot afford health insurance coverage.
  • Health Insurance Calculations Regarding Medicare The current paper indicates that when it comes to reimbursement, the CMS says that, on average, Medicare covers around 80% of all payments.
  • Importance of Life Insurance and Annuities In the case of insurance, the policyholder pays a certain amount in return for a premium upon the passing of the insured individual.
  • Issue of the Urgent Need for Health Insurance The paper states that the urgent need for health insurance disorients people. Failing to find quick insurance, they abandon it and put themselves at risk.
  • Health Costs and Insurance in Healthcare This paper provides a summary of the article on health costs “You can appeal a Medicare premium surcharge” and gives health insurance evaluation.
  • Disability Income Insurance: Benefits and Drawbacks Disability income insurance is a supplemental policy that protects policyholders from losing their income if they cannot work due to illness or an accident.
  • Discussion of Business Insurance Types Business insurance is one of the potential way of guarding business against losses due to events that may occur during the regular course of business.
  • Employer-Provided Health Insurance (EPHI) Model EPHI is the predominant healthcare insurance model available in the United States. It includes access to medical services, lower out-of-pocket payment, and saving time.
  • Business Liabilities and Insurance This essay describes the potential business liabilities related to residential rental properties, recommended types of insurance, and approaches to mitigate risks.
  • Tricare and Other Health Insurance Programs This paper helps to understand the main programs of Tricare in detail and in nuance required by a healthcare professional.
  • Primary, Secondary, and Supplementary Health Insurance A medical insurance policy covering a client as a subscriber, an employee, or a member is known as primary insurance.
  • Life Insurance: Types, Value of Money Life insurance can be defined as the contract between the insurer and the person who owns the policy. Some countries include some events included in the premium policy.
  • The Insurance Industry in Saudi Arabia The Saudi government has taken measures to ensure that the country’s insurance industry is robust and up to international standards.
  • Customer Loyalty Within the Insurance Industry The aim of the study will be divided into overall objective which is further divided into a number of specific objectives for comprehensive analysis.
  • State Children’s Health Insurance Program The SCHIP is a program between the federal and state governments that provides comprehensive health care coverage to uninsured children from financially-challenged families.
  • Indemnity Dental Insurance and Its Benefits The major benefit of indemnity insurance is that it gives the patients an opportunity to receive the service of the dentist of their choice.
  • Dental Plans and Dental Insurance This paper discusses how does the ADA plan save money for the patient and whether DR increases or decreases employer’s administrative burden for dental insurance.
  • Health Insurance Myth and Misconceptions in Nursing This paper discusses the article “Myths and misconceptions about US health insurance” about the failure to understand the complicated process of health insurance.
  • Healthcare Insurance: Effects of Adverse Selection People will go for insurance plans where they pay the minimal amount of premiums but get the maximum cover. This type of reasoning is referred to as adverse selection.
  • The Policy for the Travel Insurance and Legal Concepts Travel or Flight Accident Insurance Policy is a popular cover offered by this firm. In the event that one is involved in a flight accident, this policy offers as much as $100,000.
  • Risk Management: Various Insurance Types The paper introduces the concepts of risk and insurance, considers different types of insurances and liability policies, and makes respective conclusions.
  • USHCS Perspective: A Structured Analysis of Children’s Health Insurance This paper provides a structured analysis of the Maryland Children’s Health Insurance by providing an insight into the organization’s overview.
  • Medical Insurance Cover for Vulnerable Age Groups Medical experts have confirmed that early screening and detection of women among this age group is necessary in order to avert health crises before reaching a severe stage
  • Rationale Strategy: PetSafe Pet Insurance This paper discusses emails of PetSafe Pet Insurance. Discusses the strategy of the company to involve new clients.
  • Government and Private Health Insurance According to the Census Bureau, government insurance plans have 38% of Americans in comparison to 67% of people who get private health insurance services.
  • The Issues of Insurance of Health Income inequalities and lack of insurance lead to poor health conditions. Health coverage is primarily useful because it compensates for all the medical expenses to the hospital.
  • Health Insurance in the US The US health insurance system contains multiple organizations that work to reduce the burden of the increasing costs of health services in the country.
  • Selling Life Insurance Policies: Viatical Settlements Analysis Viatical settlements allow people with a life expectancy of two or fewer years to sell their life insurance policy for a value higher than the policy’s current face value.
  • Health Insurance: Overview of Insurance Plans in USA In this article, the author looks at the various insurance plans available in the US, their coverage, and target populations.
  • Prepaid Insurance or Payment Adjustments Prepaid insurance is a kind of prepayment that stands for the installments made for the expenses which have not been procured yet.
  • Why the HIH Insurance Collapsed? This ‘historical point of view was not only in terms of the extent of losses, but also for the far-reaching effects on the Australian community.
  • Capital Mortgage Insurance Corporation’s Negotiations It is important to apply the guidelines that will enable Capital Mortgage Insurance Corporation to facilitate effective communication during the negotiation.
  • Medical Insurance: Health Care Reform The United States is said to have reached a stage where the status of health care is precarious, primarily because of it is simply not sustainable anymore.
  • Credit Life and Credit Disability Insurance Credit insurance and credit disability insurance are services provided by several insurance companies. Credit life makes an effort to cover the remaining loan when one dies.
  • Australian Insurance Market Segment Analysis The report elaborates a specific market segment of Australian motor car insurance via an understanding of its customers.
  • Market Analysis of Allstate Insurance Company An in-depth analysis on the marketing strategies employed by Allstate Insurance Company identifying critical issues in organization that need to be addressed from the SWOT analysis.
  • Health Insurance Crimes in the United States There need to be more stringent regulations in the way Medicare claims are filed and met, a concerted effort from the part of patients, physicians, insurers, and the government.
  • Health Insurance for Employees Every company is responsible for the welfare of its employees and healthcare insurance certainly falls into the parameter of welfare
  • Health Insurance Exchange: Economic Perspective A health insurance exchange or marketplace is defined as an area where residents may identify the conditions for having health insurance.
  • Debate on Abortion Insurance in South Dakota The Healthcare Insurance Ban health policy in South Dakota is a public health concern and a direct violation of federal law.
  • Health Insurance Abortion Ban in South Dakota The policymakers of South Dakota should strive to ensure that the Health Insurance Abortion ban is more inclusive by considering rape and incest-related pregnancies.
  • National Health Insurance: Debate Summary This work presents the flow of discussion about the National Health Insurance system showing its potential influence on the development of the policies and summarizes the outcomes.
  • Sociology: Economic Class and Health Insurance The paper explores the hypothesis that higher economic class people are more likely to have comprehensive health insurance.
  • The State Children’s Health Insurance Program Having conducted a thorough analysis of the shortcomings of the SCHIP, I came to the conclusion that the program has good potential, even though it should be revised.
  • Health Insurance for Children With Special Needs The health gaps affecting CSHCN are products of two major factors – low levels of health literacy (social impediments to health care access) and poor government policies.
  • Lloyd’s Company Solvency: Unique Insurance Strategy It is crucial for Lloyd’s to develop its information management approach and work on the means to promote a better cohesion between its members.
  • Health Insurance: Prisoner’s Dilemma By becoming part of the universal health insurance, the prison would no longer have to negotiate for specific healthcare items at increased cost and limited choices.
  • Anthem Insurance Companies’ Process Improvement Anthem is an insurance company that prioritizes the value of plans it provides to clients and accountability in its work.
  • The Federal Insurance Contributions Act: Economic Burden Payroll tax, such as the Federal Insurance Contributions Act (FICA), is a form of tax imposed on the wages that employees receive from a given firm.
  • General Worldwide Insurance Company Information Technology Generali Worldwide Insurance Company recognizes the need for the effective and safe use of information technology for furthering its governance, risk, and compliance functions.
  • Florida Health Care Insurance This work includes information on health insurance, general health statistics of the population in Florida, and the state’s position on health care reform.
  • Anthem Insurance Companies’ Risk Management The organization in question is an insurer Anthem that has to provide reimbursements to medical establishments for their services.
  • Anthem Insurance Companies’ Cost Benefit Analysis This paper provides a cost and benefits analysis (CBA) and the evaluation of patient safety issue from the perspective of Anthem.
  • National Health Insurance and Its Disadvantages National health insurance (NHI) invariably becomes a reason for heated debates since the beginning of its history in 1912.
  • Health Insurance Benefits and Cost Reduction This essay seeks to evaluate how health insurance benefits affect an organization’s strategic goal setting, as well as how organizations can ensure cost reductions.
  • National Health Insurance: Contrarguments In this paper, the arguments of the opponents that were presented to advocate for national healthcare insurance (NHI) are going to be countered.
  • Florida Abortion Policies and Health Insurance Health plans that are provided in the Florida state’s health exchange by ACA may only cover abortion in the cases when the life of the woman is at risk.
  • Risk Management and Insurance Principles The risk manager should develop allocate some funds into risk insurance. This will enable the company get the necessary funds to be able to reduce losses.
  • Old Age, Survivors, and Disability Insurance Benefits The Old Age, Survivors, and Disability Insurance benefits (OASDI) is one of the Social Security programs that every American is entitled to as their social right.
  • Safety of Healthcare Information: The Health Insurance Portability and Accountability Act The general provisions of HIPAA establish the definitions for key terms, for example, PHI, health insurance coverage, group health plan, and covered entities.
  • Health Care Reform and Insurance in Florida The lack of sufficient health insurance in Florida coverage is one of the critical issues that prevent it from being considered healthy.
  • Health Insurance: Payment Methods by Bodenheimer & Grumbach (2012) In the United States of America, there is a large portion of the population that does not have health insurance. This tendency occurs because health insurance is quite expensive.
  • Robinson Insurance Agency’ Leadership Assessment Robinson Agency faces the challenges of selection, transition, and replacement associated with the human resources because of the necessity to select persons who have great leadership potential.
  • Healthcare Insurances in Florida Access to health insurance is one of the most critical issues of concern in the modern US health care system. This work discusses the health care insurances in Florida.
  • Obamacare and Universal Medical Insurance Coverage It is paramount to provide universal health care insurance if the U.S. population is to have a better health level, and, consequently, a higher quality of life.
  • Health Insurance Policy’s Impact on Nursing The federal policy that has a significant impact on the role of the advanced practice registered nurse is the Health Insurance Portability and Accountability Act (HIPAA).
  • Medical Insurance among the Citizens: Statistical Research Healthy People 2020 is the project that comprises numerous recommendations related to health care and health promotion among Americans.
  • Insurance Management: Burglary and Thrift Exposure In order to prevent the shop owner from suffering major financial losses in the case of a raid, such a method as noninsurance transfer can be suggested.
  • HIPAA: Impact on Healthcare Privacy and Risk Management The healthcare system is concerned with the duties of providing the people with treatment, prevention measures, and overall management of health.
  • The New York State Department of Financial Services: Tackling Insurance Malpractices This report examines the disciplinary measures that have been employed by the insurance regulator in the State of New York in a bid to determine what constitutes a good insurance company.
  • Health Insurance Types and Market Failures: Understanding the Issues Market failure is the term used by economists to describe instances where insurance markets fail to provide adequate insurance services at reasonable prices.
  • An Economic Analysis of the National Health Insurance In this paper, an economic analysis of a National Health Insurance is going to be carried out, in the US context. There is going to be presentation of the historical background of Insurance.
  • Accident Insurance Claim Personal Injury Insights
  • Bank Runs and Moral Hazard: A Review of Deposit Insurance
  • Choosing the Right Insurance for Homeowners
  • Cheap Car Insurance for Young Drivers
  • Employer-Provided Health Insurance and Job Change
  • Crop Insurance Under Restricted Access to Financial Markets
  • Case Capital Mortgage Insurance Corporation
  • Directors’ and Officers’ Insurance and Shareholders’ Protection
  • Crop Insurance, Moral Hazard, and Agricultural Chemical Use
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  • The Importance of Financial Innovation in Deposit Insurance
  • Federal Deposit Insurance Corporation
  • Choosing the Right Pet Insurance Policies
  • Examining the Insurance Industry in Nigeria
  • Financial Instability and Life Insurance Demand
  • Bad Debt Loss Insurance in Settlement and Litigation
  • Health and Health Insurance Trajectories of Mexicans in the US
  • Children’s Health Insurance Program: An Evaluation 1997-2010
  • Disability Insurance, Population Health, and Employment in Sweden
  • Crop Insurance Moral Hazard From Price and Weather Forecasts
  • Employment and Adverse Selection in Health Insurance
  • Canadian Immigration and Health Insurance
  • Background Uncertainty and the Demand for Insurance Against Insurable Risks
  • Affordable Health Insurance for Unemployed
  • Dealers’ Insurance, Market Structure, and Liquidity

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StudyCorgi. (2021, December 21). 168 Insurance Essay Topics & Research Topics on Insurance. https://studycorgi.com/ideas/insurance-essay-topics/

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StudyCorgi . "168 Insurance Essay Topics & Research Topics on Insurance." December 21, 2021. https://studycorgi.com/ideas/insurance-essay-topics/.

StudyCorgi . 2021. "168 Insurance Essay Topics & Research Topics on Insurance." December 21, 2021. https://studycorgi.com/ideas/insurance-essay-topics/.

These essay examples and topics on Insurance were carefully selected by the StudyCorgi editorial team. They meet our highest standards in terms of grammar, punctuation, style, and fact accuracy. Please ensure you properly reference the materials if you’re using them to write your assignment.

This essay topic collection was updated on June 23, 2024 .

Innovate to win: Why market research is key to insurance industry success

A changing world demands insurance innovation

Underlying drivers of change are fundamentally transforming the foundations of the insurance industry. New ways to expand insurability and to measure, control, and price risk enable the creation of innovative insurance products and services. Digital platforms disrupt how insurers reach policyholders and potential customers, especially millennials who expect on-demand, high-touch services with delightful user experiences. Technology advances including artificial intelligence and cloud computing improve efficiencies, and with automation, insurers can reduce the cost of a claims journey by as much as 30%. 1 How can insurers leverage these breakthroughs to address unmet consumer demand, successfully launch new insurance products, and drive down costs?

Milliman addresses this question in the “Innovate to win” series. Our first article presented a roadmap to guide you through the entire innovation process. 2 Here, we focus on how you can identify and meet the needs of your customers through market research.

Why do insurers need to conduct market research?

Research into the behavioral economics, marketing, and psychology of insurance products is business-critical for insurers. To sustain profitable growth, insurers must create innovative products and services while improving customer connectivity. The typical insurance company loses 10% to 15% of its customer base every year and the cost of acquiring new customers makes this churn extremely expensive. 3 However, innovation is also expensive and inherently risky. According to Harvard Business School, 95% of the 30,000 new products introduced into the general marketplace each year are failures. 4 With deep risk management expertise and large customer bases, insurers are better positioned to succeed at innovation when compared to other industries.

Successful innovations solve fundamental customer problems in new, better, or more cost-effective ways. Researching customer needs and expectations in the context of your competitive landscape is an integral part of the process. To mitigate risk, all these questions should be researched and answered before launching any innovation into the market:

  • What products, services, processes, and ideas are already available in the marketplace?
  • What are consumers looking for in this offering and how does it meet their needs?
  • What similar products/services do my competitors offer and what are they doing to stay competitive in this market?
  • Is this a new offering or different approach to an existing offering?
  • What is the potential market size in terms of revenue and profits for this product/service?
  • How will we market this offering to consumers?
  • Will this offering work as we have designed it?
  • Will this product, service, or process disrupt the market, and if so, what impact and value would it have on consumers and the industry?

Market research provides valuable insight into consumer needs and can eliminate misperceptions regarding what potential customers will think about your new product, service, or process. Research can help you clearly define your target market, avoid costly mistakes, and speed product development time. Although market research helps mitigate risk, it does not eliminate it entirely and can be costly. You will need to determine how much time and money you are willing to spend researching the market and if your potential innovation is worth the investment.

What types of market research work best for insurers?

Primary and secondary research are the two most effective ways for insurers to gather information about markets, products, and consumers. Contrary to its name, secondary research is usually conducted first and analyzes existing data. By combining multiple sources of secondary data, you can identify trends and gather useful information at a low cost. You can then use this information to better understand the actions you and/or others have already taken and learn from any mistakes or successes. Secondary research helps maximize future primary research, which is the collection of new data about a specific topic. Certainly, secondary research has value, but it lacks the customization and specificity needed to evaluate larger insurance innovation projects.

When do insurers need to invest in primary research?

A business decision of major consequence requires primary research. Primary research begins with a review of secondary research to efficiently gain direction and insight into the intended study topic. After that, quantitative and/or qualitative methodologies are used to gain further insight into consumer needs, preferences, and behavior. Additional benefits of engaging clients in a research project include strengthening relationships, winning loyalty, and creating new business opportunities.

Quantitative data, typically gathered using surveys, can be represented by usable statistics. Surveys gather a significant amount of data in a relatively short timeframe from a wide range of people, giving you the confidence that the data accurately represents your customer base. This data can provide valuable insight into consumer preferences such as likes and dislikes, satisfaction ratings, and opinions. You can run statistical significance tests to apply results to the population of interest and present the results graphically. Data-driven charts and graphs are an effective way to help stakeholders understand research and convince them to act on the results.

When you need more context regarding your data-- for example, why people feel a certain way about a response-- then qualitative research is the best approach. Sometimes the “why” is critical to exploring a study topic and qualitative research addresses this requirement through focus groups and interviews. These methods enable more in-depth understanding through direct quotes from respondents, the use of themes to bucket responses, and the ability to contextualize answers to understand the “why.” Although qualitative research is valuable, it can be time-consuming and costly when compared to quantitative research. Data is collected from a much smaller sample, so it is difficult to present in an aggregate summary and not statistically significant as being representative of the entire population.

How does primary research advance insurance innovation?

Both types of primary research methods are valuable and can provide insight into the market with different applications and emphasis:

  • Quantitative surveys are questionnaires developed specifically for the topic being studied and distributed to a large sample of potential respondents based on specific criteria. Surveys provide a comprehensive view of the market due to a large sample size but are limited in the ability to understand the “why.”
  • Qualitative interviews and focus groups provide context by giving participants the opportunity to expand on why they have certain beliefs and opinions and how they feel about the topic of study. In-depth interviews are one-on-one sessions with participants who are selected for their expertise and knowledge in a specified area. Focus groups are moderated discussions of opinions about a specific topic or product. Seven to 10 participants are selected using a screener questionnaire based on specific criteria. The moderator provides the structure, asks the questions, and gives overall direction to guide the discussion.

The most effective product development processes combine quantitative and qualitative research methodologies to refine and validate innovative ideas and prototypes. When you get the results of your research, it is important to have the infrastructure and resources in place to act on those insights. It is also important to note that the results of your research may require you to change your plans because what you previously thought were great ideas were not validated by the market research.

Still, it might be difficult to for your company to adopt new ideas and move forward with your innovation. Administrative systems can slow your company’s product development process and potentially hinder your initiative. Distribution issues can also make or break new product or service delivery. Bottom-line concerns such as low interest rates and the cost of meeting regulatory requirements are key considerations. As a result, many insurers de-emphasize innovative product development initiatives because of resource constraints and development and approval costs. 5

If you are making a big decision regarding an innovation, it is important to dedicate resources to perform in-depth market research. Discovering what your target customers think about your innovation enables you to tailor and refine it before you officially launch it. It is best practice to test multiple variations of your solution with your target market to determine which version resonates most with customers. Research is an opportunity for you to test both the innovation and the messaging you will use when going to market.

If you would like to discuss how customized market research can strengthen the development of your innovative offerings, please contact David Bahlinger or one of the other outstanding professionals at Milliman.

1 McKinsey. (March 2017). Digital disruption in Insurance: Cutting through the noise. Retrieved on May 26, 2020, from https://www.mckinsey.com/~/media/McKinsey/Industries/Financial%20Services/Our%20Insights/Time%20for%20insurance%20companies%20to%20face%20digital%20reality/Digital-disruption-in-Insurance.ashx .

2 Borcan, Ashlee Mouton. Milliman.com. Innovate to win: Insurance industry roadmap to success. March 5, 2020. Retrieved on May 26, 2020, from https://us.milliman.com/en/insight/innovate-to-win-insurance-industry-roadmap-to-success

3 Simpson, Pamela. The Lowdown: Reimagining Research to Recognize Emerging Insurance Industry Trends. (September 19, 2019). Insurance Journal. Retrieved on May 26, 2020, from https://www.insurancejournal.com/blogs/research-trends/2019/09/19/540368.htm .

4 Emmer, Marc. 95 Percent of New Products Fail. Here are six steps to make sure yours don’t. (July 6, 2018). Inc. Retrieved on May 26, 2020, from https://www.inc.com/marc-emmer/95-percent-of-new-products-fail-here-are-6-steps-to-make-sure-yours-dont.html .

5 Society of Actuaries. Understanding the Product Development Process of Life and Annuity Companies. (December 2017). Retrieved on May 26, 2020, from https://www.soa.org/globalassets/assets/files/research/understanding-product-development-report.pdf .

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Research into the behavioral economics, marketing, and psychology of insurance products is business-critical for insurers.

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